58 Education "University of Oxford " PhD positions at Radboud University in Netherlands
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investigating the learning behaviour of neural networks from both a theoretical and experimental angle, you will help us to better understand their limits and potentially develop improved learning algorithms. In
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interested in understanding and predicting global biodiversity change and identifying solutions for biodiversity conservation? If so, come and join us to develop and apply new modelling approaches to quantify
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roughly 10 percent of your time (0.1 FTE) helping with the teaching activities in our department. For example, you may be asked to tutor practical assignments, grade coursework, give presentations during
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School of Management, academic research and teaching are carried out in challenging educational programmes. These programmes are offered in the areas of Business Administration; Economics and Business
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the better. This position has a light teaching load, of up to 10% of your working time. Upon successful completion, you will be awarded a PhD from Radboud University. We welcome applications from candidates
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individuals, analysing experimental data, and reporting and presenting research findings through scientific publications and conference presentations, respectively. You will also have a 0.1 FTE teaching
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to target proteins. In the Marie Sklodowska-Curie Doctoral Training network 'TargetRNA' we will develop selective drugs that target RNA instead. As a PhD candidate, you will work on the development of new
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the computations and neural mechanisms of these complex processes. As a PhD candidate, you will also have the opportunity to develop valuable skills by mentoring students, participating in international conferences
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, you will also have the opportunity to develop valuable skills by mentoring students, participating in international conferences, and collaborating with leading researchers in the field. We offer access
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-develop algorithms for neuromorphic hardware, focusing on the inherent stochasticity in neuromorphic materials. This will pave the way towards solutions for problems in optimisation and sampling, creating